This is the offical Github repository of Panda-70M.
Panda-70M: Captioning 70M Videos with Multiple Cross-Modality Teachers
Tsai-Shien Chen,
Aliaksandr Siarohin,
Willi Menapace,
Ekaterina Deyneka,
Hsiang-wei Chao,
Byung Eun Jeon,
Yuwei Fang,
Hsin-Ying Lee,
Jian Ren,
Ming-Hsuan Yang,
Sergey Tulyakov
Computer Vision and Pattern Recognition (CVPR) 2024
Panda-70M is a large-scale dataset with 70M high-quality video-caption pairs. This repository have three sections:
- Dataset Dataloading includes the csv files listing the data of Panda-70M and the code to download the dataset.
- Splitting includes the code to split a long video into multiple semantics-consistent short clips.
- Captioning includes the proposed video captioning model trained on Panda-70M.
Split | Download | # Source Videos | # Samples | Video Duration | Storage Space |
---|---|---|---|---|---|
Training (full) | link (2.01 GB) | 3,779,763 | 70,723,513 | 167 khrs | ~36 TB |
Training (10M) | link (381 MB) | 3,755,240 | 10,473,922 | 37.0 khrs | ~8.0 TB |
Training (2M) | link (86.5 MB) | 800,000 | 2,400,000 | 7.56 khrs | ~1.6 TB |
Validation | link (803 KB) | 2,000 | 6,000 | 18.5 hrs | ~4.0 GB |
Testing | link (803 KB) | 2,000 | 6,000 | 18.5 hrs | ~4.0 GB |
More details can be found in Dataset Dataloading section.
A rhino and a lion are fighting in the dirt. | A person is holding a long haired dachshund in their arms. | A rocket launches into space on the launch pad. |
A person is kneading dough and putting jam on it. | A little boy is playing with a basketball in the city. | A 3d rendering of a zoo with animals and a train. |
**We will remove the video samples from our dataset / Github / project webpage / technical presentation as long as you need it. Please contact tsaishienchen at gmail dot com for the request.
Please check here for more samples.
long_video_demo_1.mp4
long_video_demo_2.mp4
See license. The video samples are collected from a publicly available dataset. Users must follow the related license to use these video samples.
If you find this project useful for your research, please cite our paper. 😊
@article{chen2024panda70m,
title = {Panda-70M: Captioning 70M Videos with Multiple Cross-Modality Teachers},
author = {Chen, Tsai-Shien and Siarohin, Aliaksandr and Menapace, Willi and Deyneka, Ekaterina and Chao, Hsiang-wei and Jeon, Byung Eun and Fang, Yuwei and Lee, Hsin-Ying and Ren, Jian and Yang, Ming-Hsuan and Tulyakov, Sergey},
journal = {arXiv preprint arXiv:2402.19479},
year = {2024}
}
Tsai-Shien Chen: tsaishienchen@gmail.com